Vehicle Recognition for Toll Collection
Home » Case Study » Vehicle Recognition for Toll Collection
Project Overview:
Objective
The “Vehicle Recognition for Toll Collection” project aims to create a comprehensive dataset of video clips capturing various vehicles passing through toll collection points. This dataset will be instrumental in training machine learning models for efficient and accurate toll collection systems.
Scope
Our project’s scope includes collecting video footage from toll booths, bridges, and highway entrances, and annotating instances of vehicles for toll collection purposes.
Sources
- Toll Booth Operators: Collaborate with toll booth operators to access their surveillance camera feeds installed at toll collection points.
- Transportation Authorities: Partner with transportation authorities responsible for managing toll roads and bridges to obtain video footage.
- Public Databases: Utilize publicly available video datasets containing footage from toll collection points, if applicable.
Data Collection Metrics
- Total Video Clips: 15,000 clips
- Toll Booth Operators: 10,000
- Transportation Authorities: 3,000
- Public Databases: 2,000
Annotation Process
Stages
- Vehicle Recognition: Annotate each video clip with labels indicating the type of vehicle, such as cars, trucks, motorcycles, and more, for toll collection purposes.
- License Plate Recognition: Implement license plate recognition to capture and log license plate information for toll collection and tracking.
- Geolocation and Timestamp: Log metadata including the geolocation of the toll collection point, date, time, and vehicle type.
Annotation Metrics
- Video Clips with Vehicle Annotations: 15,000
- License Plate Recognition Data: 15,000
- Geolocation and Timestamp Metadata: 15,000
Quality Assurance
Stages
Annotation Verification: Implement a validation process involving experts to review and verify the accuracy of vehicle annotations and license plate recognition.
Privacy Compliance: Ensure compliance with privacy regulations and data protection policies. Anonymize any personally identifiable information, such as driver faces, in the video clips.
Data Security: Implement robust data security measures to protect sensitive information and maintain the integrity of the dataset.
QA Metrics
- Annotation Validation Cases: 1,500 (10% of total)
- Privacy Audits: Ongoing to ensure compliance
Conclusion
The “Vehicle Recognition for Toll Collection” dataset serves as a crucial resource for the development of efficient and accurate toll collection systems. With diverse video clips, precise vehicle annotations, and strict privacy and security compliance, it provides a solid foundation for building advanced toll collection and traffic management solutions that can enhance transportation infrastructure and streamline toll-related operations.
Quality Data Creation
Guaranteed TAT
ISO 9001:2015, ISO/IEC 27001:2013 Certified
HIPAA Compliance
GDPR Compliance
Compliance and Security
Let's Discuss your Data collection Requirement With Us
To get a detailed estimation of requirements please reach us.